Takagi-Sugeno neural fuzzy models (TS-models) have commonly been applied in the development of traffic flow predictors based on traffic flow data captured by the on-road sensors installed along a freeway. However, using all captured traffic flow data is ineffective for the TS-models for traffic flow predictions. Therefore, an appropriate on-road sensor configuration consisting of significant sensors is essential to develop an accurate TS-model for traffic flow forecasting. Although the trial and error method is usually used to determine the appropriate on-road sensor configuration, it is time-consuming and ineffective in trialing all individual configurations. In this paper, a systematic and effective experimental design method involving or...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
Prediction of the driver-vehicle-unit (DVU) future state is a challenging problem due to many dynami...
This paper presents the application of simulation to assess and predict the influence of random fact...
On-road sensors provide proactive traffic control centers with current traffic flow conditions in or...
This paper develops a fuzzy-neural model (FNM) to predict the traffic flows in an urban street netwo...
Neural networks have been applied for short-term traffic flow forecasting with reasonable accuracy. ...
Abstract—Information on the future state of traffic flow provides a solid foundation for the efficie...
In this paper, we propose a fuzzy system to control vehicle traffic flows on a street network. At a ...
Over the past two decades, neural networks have been applied to develop short-term traffic flow pred...
In the last two decades the efficient traffic-flow prediction of vehicles has been significant in cu...
This paper analyses traffic prediction based on a Generic Self-Evolving Takagi-Sugeno-Kang (GSETSK) ...
On-road sensor systems installed on freeways are used to capture traffic flow data for short-term tr...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
In the last few years, there has been a significant rise in the number of private vehicles ownership...
This paper presents a novel approach to one-step-forward prediction of traffic flow based on fuzzy r...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
Prediction of the driver-vehicle-unit (DVU) future state is a challenging problem due to many dynami...
This paper presents the application of simulation to assess and predict the influence of random fact...
On-road sensors provide proactive traffic control centers with current traffic flow conditions in or...
This paper develops a fuzzy-neural model (FNM) to predict the traffic flows in an urban street netwo...
Neural networks have been applied for short-term traffic flow forecasting with reasonable accuracy. ...
Abstract—Information on the future state of traffic flow provides a solid foundation for the efficie...
In this paper, we propose a fuzzy system to control vehicle traffic flows on a street network. At a ...
Over the past two decades, neural networks have been applied to develop short-term traffic flow pred...
In the last two decades the efficient traffic-flow prediction of vehicles has been significant in cu...
This paper analyses traffic prediction based on a Generic Self-Evolving Takagi-Sugeno-Kang (GSETSK) ...
On-road sensor systems installed on freeways are used to capture traffic flow data for short-term tr...
The transport system in Singapore is well developed. Singapore is facing a first world public transp...
In the last few years, there has been a significant rise in the number of private vehicles ownership...
This paper presents a novel approach to one-step-forward prediction of traffic flow based on fuzzy r...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
Prediction of the driver-vehicle-unit (DVU) future state is a challenging problem due to many dynami...
This paper presents the application of simulation to assess and predict the influence of random fact...